This paper presents a general framework that simultaneously improves the quality and the execution speed of a range of video enhancement tasks, such as super-sampling, deblurring, and denoising. The key to our framework is a pixel motion estimation algorithm that generates accurate motion from low-quality videos while being computationally very lightweight. Our motion estimation algorithm leverages point cloud information, which is readily available in today's autonomous devices and will only become more common in the future. We demonstrate a generic framework that leverages the motion information to guide high-quality image reconstruction. Experiments show that our framework consistently outperforms the state-of-the-art video enhancement algorithms while improving the execution speed by an order of magnitude.
翻译:本文提出了一个总体框架,可以同时提高一系列视频增强任务的质量和执行速度,例如超级抽样、分流和拆分。我们框架的关键是像素运动估计算法,这种算法从低质量视频中产生准确的动作,而计算时却非常轻。我们的运动估计算法利用了点云信息,这种信息在今天的自主设备中很容易获得,而且将来只会变得更加常见。我们展示了一个利用运动信息指导高质量图像重建的通用框架。实验显示,我们的框架始终高于最先进的视频增强算法,同时以一定的规模提高执行速度。